利用稀疏视差测量和颜色信息进行锐视差重建

Lee-Kang Liu, Zucheul Lee, Truong Nguyen
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引用次数: 4

摘要

最近,有人提出了从包含视差边缘的5%稀疏初始估计重建密集视差图的工作[[1]]。然而,实际上,除非已经生成密集的视差图,否则视差中的边是未知的。本文提出了一种利用彩色图像信息从固定数量的稀疏初始估计中获得清晰密集视差图的现实重建框架。实验结果表明,以1像素的精度为代价,可以重建出尖锐和密集的视差图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sharp disparity reconstruction using sparse disparity measurement and color information
Recently, the work on dense disparity map reconstruction from 5% sparse initial estimates containing edges in disparity, has been proposed [1]. Practically, however, edges in disparity is unknown unless a dense disparity map has already been generated. In this paper, we present a realistic reconstruction framework for obtaining sharp and dense disparity maps from fixed number of sparse initial estimates with the aid of color image information. Experimental results show that sharp and dense disparity maps can be reconstructed at the cost of one pixel accuracy.
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